Comparison of ANFIS and ANN Techniques in the Simulation of a Typical Aircraft Fuel System Health Management

Vijaylakshmi S. Jigajinni, V. Upendranath
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引用次数: 1

Abstract

The performance of an aircraft can be improved by predicting the possible complications associated with the system. Prognostics and Health Management (PHM) methodology includes fault detection, diagnosis, and prognosis. In this paper, a comparison of Adaptive Neuro-Fuzzy Inference System (ANFIS) with Artificial Neural Network (ANN) based fault prognosis tool for a typical aircraft fuel system is proposed. The ANFIS is an expert system which works on logical rules. The inputs of both ANFIS and ANN are trained by considering the same input data and generate the corresponding control signal. These methods identify the presence of faults and mitigate them to maintain a proper fuel flow to the engine. Overlooking the presence of any faults in time could potentially be catastrophic which can lead to possible loss of lives and the aircraft as well. These proposed tools work on the logical rules developed as per the engine’s fuel consumption and quantity of fuel flow from the tanks. The results are compared and analyzed which demonstrate the superiority of ANFIS tool compared to ANN.
ANFIS和ANN技术在典型飞机燃油系统健康管理仿真中的比较
飞机的性能可以通过预测与该系统相关的可能并发症来提高。预后和健康管理(PHM)方法包括故障检测、诊断和预后。本文针对一个典型的飞机燃油系统,将自适应神经模糊推理系统(ANFIS)与基于人工神经网络(ANN)的故障预测工具进行了比较。ANFIS是一个基于逻辑规则的专家系统。ANFIS和ANN的输入都是通过考虑相同的输入数据来训练的,并产生相应的控制信号。这些方法可以识别故障的存在并减轻故障,以保持发动机的适当燃油流量。及时忽视任何故障的存在都可能是灾难性的,这可能导致生命和飞机的损失。这些提出的工具根据根据发动机的燃油消耗量和油箱中的燃油流量制定的逻辑规则工作。对结果进行了比较和分析,证明了ANFIS工具与人工神经网络相比的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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